Polynomial least squares
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In
statistics Statistics (from German: '' Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, indust ...
, polynomial regression is a form of regression analysis in which the relationship between the independent variable ''x'' and the dependent variable ''y'' is modelled as an ''n''th degree
polynomial In mathematics, a polynomial is an expression consisting of indeterminates (also called variables) and coefficients, that involves only the operations of addition, subtraction, multiplication, and positive-integer powers of variables. An exampl ...
in ''x''. Polynomial regression fits a nonlinear relationship between the value of ''x'' and the corresponding
conditional mean In probability theory, the conditional expectation, conditional expected value, or conditional mean of a random variable is its expected value – the value it would take “on average” over an arbitrarily large number of occurrences – give ...
of ''y'', denoted E(''y'' , ''x''). Although ''polynomial regression'' fits a nonlinear model to the data, as a statistical estimation problem it is linear, in the sense that the regression function E(''y'' ,  ''x'') is linear in the unknown
parameter A parameter (), generally, is any characteristic that can help in defining or classifying a particular system (meaning an event, project, object, situation, etc.). That is, a parameter is an element of a system that is useful, or critical, when ...
s that are estimated from the
data In the pursuit of knowledge, data (; ) is a collection of discrete values that convey information, describing quantity, quality, fact, statistics, other basic units of meaning, or simply sequences of symbols that may be further interpret ...
. For this reason, polynomial regression is considered to be a special case of multiple linear regression. The explanatory (independent) variables resulting from the polynomial expansion of the "baseline" variables are known as higher-degree terms. Such variables are also used in classification settings.


History

Polynomial regression models are usually fit using the method of least squares. The least-squares method minimizes the variance of the unbiased estimators of the coefficients, under the conditions of the Gauss–Markov theorem. The least-squares method was published in 1805 by Legendre and in 1809 by Gauss. The first
design A design is a plan or specification for the construction of an object or system or for the implementation of an activity or process or the result of that plan or specification in the form of a prototype, product, or process. The verb ''to design' ...
of an
experiment An experiment is a procedure carried out to support or refute a hypothesis, or determine the efficacy or likelihood of something previously untried. Experiments provide insight into cause-and-effect by demonstrating what outcome occurs whe ...
for polynomial regression appeared in an 1815 paper of Gergonne. In the twentieth century, polynomial regression played an important role in the development of regression analysis, with a greater emphasis on issues of
design A design is a plan or specification for the construction of an object or system or for the implementation of an activity or process or the result of that plan or specification in the form of a prototype, product, or process. The verb ''to design' ...
and inference. More recently, the use of polynomial models has been complemented by other methods, with non-polynomial models having advantages for some classes of problems.


Definition and example

The goal of regression analysis is to model the expected value of a dependent variable ''y'' in terms of the value of an independent variable (or vector of independent variables) ''x''. In simple linear regression, the model : y = \beta_0 + \beta_1 x + \varepsilon, \, is used, where ε is an unobserved random error with mean zero conditioned on a scalar variable ''x''. In this model, for each unit increase in the value of ''x'', the conditional expectation of ''y'' increases by ''β''1 units. In many settings, such a linear relationship may not hold. For example, if we are modeling the yield of a chemical synthesis in terms of the temperature at which the synthesis takes place, we may find that the yield improves by increasing amounts for each unit increase in temperature. In this case, we might propose a quadratic model of the form : y = \beta_0 + \beta_1x + \beta_2 x^2 + \varepsilon. \, In this model, when the temperature is increased from ''x'' to ''x'' + 1 units, the expected yield changes by \beta_1+\beta_2(2x+ 1). (This can be seen by replacing ''x'' in this equation with ''x''+1 and subtracting the equation in ''x'' from the equation in ''x''+1.) For infinitesimal changes in ''x'', the effect on ''y'' is given by the total derivative with respect to ''x'': \beta_1+2\beta_2x. The fact that the change in yield depends on ''x'' is what makes the relationship between ''x'' and ''y'' nonlinear even though the model is linear in the parameters to be estimated. In general, we can model the expected value of ''y'' as an ''n''th degree polynomial, yielding the general polynomial regression model : y = \beta_0 + \beta_1 x + \beta_2 x^2 + \beta_3 x^3 + \cdots + \beta_n x^n + \varepsilon. \, Conveniently, these models are all linear from the point of view of estimation, since the regression function is linear in terms of the unknown parameters ''β''0, ''β''1, .... Therefore, for least squares analysis, the computational and inferential problems of polynomial regression can be completely addressed using the techniques of multiple regression. This is done by treating ''x'', ''x''2, ... as being distinct independent variables in a multiple regression model.


Matrix form and calculation of estimates

The polynomial regression model :y_i \,=\, \beta_0 + \beta_1 x_i + \beta_2 x_i^2 + \cdots + \beta_m x_i^m + \varepsilon_i\ (i = 1, 2, \dots , n) can be expressed in matrix form in terms of a design matrix \mathbf, a response vector \vec y, a parameter vector \vec \beta, and a vector \vec\varepsilon of random errors. The ''i''-th row of \mathbf and \vec y will contain the ''x'' and ''y'' value for the ''i''-th data sample. Then the model can be written as a system of linear equations: : \begin y_1\\ y_2\\ y_3 \\ \vdots \\ y_n \end= \begin 1 & x_1 & x_1^2 & \dots & x_1^m \\ 1 & x_2 & x_2^2 & \dots & x_2^m \\ 1 & x_3 & x_3^2 & \dots & x_3^m \\ \vdots & \vdots & \vdots & \ddots & \vdots \\ 1 & x_n & x_n^2 & \dots & x_n^m \end \begin \beta_0\\ \beta_1\\ \beta_2\\ \vdots \\ \beta_m \end + \begin \varepsilon_1\\ \varepsilon_2\\ \varepsilon_3 \\ \vdots \\ \varepsilon_n \end, which when using pure matrix notation is written as : \vec y = \mathbf \vec \beta + \vec\varepsilon. \, The vector of estimated polynomial regression coefficients (using
ordinary least squares In statistics, ordinary least squares (OLS) is a type of linear least squares method for choosing the unknown parameters in a linear regression model (with fixed level-one effects of a linear function of a set of explanatory variables) by the ...
estimation) is : \widehat = (\mathbf^\mathsf \mathbf)^\; \mathbf^\mathsf \vec y, \, assuming ''m'' < ''n'' which is required for the matrix to be invertible; then since \mathbf is a Vandermonde matrix, the invertibility condition is guaranteed to hold if all the x_i values are distinct. This is the unique least-squares solution.


Interpretation

Although polynomial regression is technically a special case of multiple linear regression, the interpretation of a fitted polynomial regression model requires a somewhat different perspective. It is often difficult to interpret the individual coefficients in a polynomial regression fit, since the underlying monomials can be highly correlated. For example, ''x'' and ''x''2 have correlation around 0.97 when x is uniformly distributed on the interval (0, 1). Although the correlation can be reduced by using orthogonal polynomials, it is generally more informative to consider the fitted regression function as a whole. Point-wise or simultaneous confidence bands can then be used to provide a sense of the uncertainty in the estimate of the regression function.


Alternative approaches

Polynomial regression is one example of regression analysis using basis functions to model a functional relationship between two quantities. More specifically, it replaces x \in \mathbb R^ in linear regression with polynomial basis \varphi (x) \in \mathbb R^, e.g. ,x\mathbin ,x,x^2,\ldots,x^d/math>. A drawback of polynomial bases is that the basis functions are "non-local", meaning that the fitted value of ''y'' at a given value ''x'' = ''x''0 depends strongly on data values with ''x'' far from ''x''0. In modern statistics, polynomial basis-functions are used along with new basis functions, such as splines, radial basis functions, and wavelets. These families of basis functions offer a more parsimonious fit for many types of data. The goal of polynomial regression is to model a non-linear relationship between the independent and dependent variables (technically, between the independent variable and the conditional mean of the dependent variable). This is similar to the goal of nonparametric regression, which aims to capture non-linear regression relationships. Therefore, non-parametric regression approaches such as smoothing can be useful alternatives to polynomial regression. Some of these methods make use of a localized form of classical polynomial regression. An advantage of traditional polynomial regression is that the inferential framework of multiple regression can be used (this also holds when using other families of basis functions such as splines). A final alternative is to use kernelized models such as support vector regression with a polynomial kernel. If residuals have unequal variance, a weighted least squares estimator may be used to account for that.


See also

* Curve fitting * Line regression * Local polynomial regression * Polynomial and rational function modeling * Polynomial interpolation *
Response surface methodology In statistics, response surface methodology (RSM) explores the relationships between several explanatory variables and one or more response variables. The method was introduced by George E. P. Box and K. B. Wilson in 1951. The main idea of RSM ...
*
Smoothing spline Smoothing splines are function estimates, \hat f(x), obtained from a set of noisy observations y_i of the target f(x_i), in order to balance a measure of goodness of fit of \hat f(x_i) to y_i with a derivative based measure of the smoothness of ...


Notes

* Microsoft Excel makes use of polynomial regression when fitting a trendline to data points on an X Y scatter plot.


References

{{Least Squares and Regression Analysis


External links


Curve Fitting
PhET Interactive simulations, University of Colorado at Boulder Regression analysis